A Survey of Data Quality Requirements That Matter in ML Development Pipelines

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Journal of Data and Information Quality Pub Date : 2023-04-19 DOI:10.1145/3592616
Margaret A. Priestley, Fionntán O'Donnell, E. Simperl
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引用次数: 2

Abstract

The fitness of the systems in which Machine Learning (ML) is used depends greatly on good-quality data. Specifications on what makes a good-quality dataset have traditionally been defined by the needs of the data users—typically analysts and engineers. Our article critically examines the extent to which established data quality frameworks are applicable to contemporary use cases in ML. Using a review of recent literature at the intersection of ML, data management, and human-computer interaction, we find that the classical “fitness-for-use” view of data quality can benefit from a more stage-specific approach that is sensitive to where in the ML lifecycle the data are encountered. This helps practitioners to plan their data quality tasks in a manner that meets the needs of the stakeholders who will encounter the dataset, whether it be data subjects, software developers or organisations. We therefore propose a new treatment of traditional data quality criteria by structuring them according to two dimensions: (1) the stage of the ML lifecycle where the use case occurs vs. (2) the main categories of data quality that can be pursued (intrinsic, contextual, representational and accessibility). To illustrate how this works in practice, we contribute a temporal mapping of the various data quality requirements that are important at different stages of the ML data pipeline. We also share some implications for data practitioners and organisations that wish to enhance their data management routines in preparation for ML.
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ML开发管道中重要的数据质量需求调查
使用机器学习(ML)的系统的适应度很大程度上取决于高质量的数据。关于什么是高质量数据集的规范传统上是由数据用户(通常是分析师和工程师)的需求定义的。我们的文章批判性地考察了已建立的数据质量框架在多大程度上适用于ML中的当代用例。通过对ML、数据管理和人机交互交叉领域的最新文献的回顾,我们发现经典的“适合使用”数据质量视图可以从一种更具体阶段的方法中受益,这种方法对ML生命周期中遇到数据的位置很敏感。这有助于从业者以满足将遇到数据集的利益相关者(无论是数据主体、软件开发人员还是组织)的需求的方式计划他们的数据质量任务。因此,我们提出了一种新的处理传统数据质量标准的方法,通过根据两个维度来构建它们:(1)用例发生的ML生命周期阶段与(2)可以追求的数据质量的主要类别(内在的,上下文的,代表性的和可访问性)。为了说明这在实践中是如何工作的,我们提供了各种数据质量需求的时间映射,这些需求在ML数据管道的不同阶段很重要。我们还分享了一些数据从业者和组织希望加强他们的数据管理程序准备ML的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACM Journal of Data and Information Quality
ACM Journal of Data and Information Quality COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.10
自引率
4.80%
发文量
0
期刊最新文献
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